人工智能在乳腺成像方面的应用
Application of Artificial Intelligence in Breast Imaging
DOI: 10.12677/ACM.2023.134980, PDF,   
作者: 周鑫仪, 冉海涛*:重庆医科大学附属第二医院超声科,重庆;唐若天:重庆大学附属三峡医院心内科,重庆
关键词: 人工智能乳腺癌超声X线MRIArtificial Intelligence Breast Cancer Ultrasound X-Ray MRI
摘要: 乳腺癌是威胁全球女性生命健康的重要原因之一,医学影像检查在早期诊断乳腺癌、评估治疗疗效及预后等方面具有重要价值,其中包括乳腺X线摄影、乳腺超声、乳腺MRI及数字乳腺断层合成摄影等。近年来不少研究者们将人工智能与医学影像图像相结合用于图像解释、图像分析等,提供了优化和简化临床的工作流程,具有较好的应用前景,本文拟对人工智能在乳腺成像方面的应用进展进行阐述。
Abstract: Breast cancer is one of the important reasons threatening the life and health of women around the world. Hospital imaging examination has important value in early diagnosis of breast cancer, evalu-ation of treatment and prognosis, including mammography, breast ultrasound, breast MRI and dig-ital tomography. In recent years, many researchers have combined artificial intelligence with hos-pital image interpretation, image analysis, etc., providing optimized and simplified clinical work-flow, with good application prospects. This article intends to describe the application progress of ar-tificial intelligence in breast imaging.
文章引用:周鑫仪, 唐若天, 冉海涛. 人工智能在乳腺成像方面的应用[J]. 临床医学进展, 2023, 13(4): 7006-7011. https://doi.org/10.12677/ACM.2023.134980

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